Keyword search (4,164 papers available)

"addiction" Keyword-tagged Publications:

Title Authors PubMed ID
1 A multimodal neuroimaging study of youth at risk for substance use disorders: Functional magnetic resonance imaging and [18F]fallypride positron emission tomography Nikolic M; Cox SML; Jaworska N; Castellanos-Ryan N; Dagher A; Vitaro F; Brendgen M; Parent S; Boivin M; Côté S; Tremblay RE; Séguin JR; Leyton M; 39725679
CSBN
2 Factors associated with high use of general practitioner and psychiatrist services among patients attending an addiction rehabilitation center Hu?nh C; Ngamini Ngui A; Kairouz S; Lesage A; Fleury MJ; 27450676
SOCANTH
3 Palatability attributed to alcohol and alcohol-paired flavors Valyear MD; Eustachon NM; Britt JP; 38430645
CSBN
4 Using machine learning to retrospectively predict self-reported gambling problems in Quebec Murch WS; Kairouz S; Dauphinais S; Picard E; Costes JM; French M; 36880253
SOCANTH
5 Simulated Gambling: An Explorative Study Based on a Representative Survey Fiedler I; Ante L; Meduna MV; Steinmetz F; Kairouz S; Costes JM; 36757603
SOCANTH
6 A new circuit underlying the renewal of appetitive Pavlovian responses: Commentary on Brown and Chaudhri (2022) Valyear MD; Britt JP; 36700576
CSBN
7 Food Addiction and Binge Eating Disorder in Relation to Dietary Patterns and Anthropometric Measurements: A Descriptive-Analytic Cross-Sectional Study in Iranian Adults with Obesity Yousefi R; Panahi Moghaddam SA; Salahi H; Woods R; Abolhasani M; Eini-Zinab H; Saidpour A; 35975474
HKAP
8 Do stimulant medications produce sensitization in humans? Marco Leyton 35398453
CSBN
9 Food Addiction and Binge Eating Impact on Weight Loss Outcomes Two Years Following Sleeve Gastrectomy Surgery Ben-Porat T; Košir U; Peretz S; Sherf-Dagan S; Stojanovic J; Sakran N; 35048249
HKAP
10 Having the Cake and Eating It Too: First-Order, Second-Order and Bifactor Representations of Work Engagement Salamon J; Tóth-Király I; Bõthe B; Nagy T; Orosz G; 34366951
PSYCHOLOGY
11 Assessing the role of cortico-thalamic and thalamo-accumbens projections in the augmentation of heroin seeking in chronically food-restricted rats. Chisholm A; Rizzo D; Fortin É; Moman V; Quietshat N; Romano A; Capolicchio T; Shalev U; 33219004
CSBN

 

Title:Using machine learning to retrospectively predict self-reported gambling problems in Quebec
Authors:Murch WSKairouz SDauphinais SPicard ECostes JMFrench M
Link:https://pubmed.ncbi.nlm.nih.gov/36880253/
DOI:10.1111/add.16179
Publication:Addiction (Abingdon, England)
Keywords:Behaviour trackingbehavioural addictionmachine learningonline gamblingproblem gamblingrandom Forest
PMID:36880253 Category: Date Added:2023-03-07
Dept Affiliation: SOCANTH
1 Department of Sociology and Anthropology, Concordia University, Montreal, Quebec, Canada.

Description:

Background and aims: Participating in online gambling is associated with an increased risk for experiencing gambling-related harms, driving calls for more effective, personalized harm prevention initiatives. Such initiatives depend on the development of models capable of detecting at-risk online gamblers. We aimed to determine whether machine learning algorithms can use site data to detect retrospectively at-risk online gamblers indicated by the Problem Gambling Severity Index (PGSI).

Design: Exploratory comparison of six prominent supervised machine learning methods (decision trees, random forests, K-nearest neighbours, logistic regressions, artificial neural networks and support vector machines) to predict problem gambling risk levels reported on the PGSI.

Setting: Lotoquebec.com (formerly espacejeux.com), an online gambling platform operated by Loto-Québec (a provincial Crown Corporation) in Quebec, Canada.

Participants: N = 9145 adults (18+) who completed the survey measure and placed at least one bet using real money on the site.

Measurements: Participants completed the PGSI, a self-report questionnaire with validated cut-offs denoting a moderate-to-high-risk (PGSI 5+) or high-risk (PGSI 8+) for experiencing past-year gambling-related problems. Participants agreed to release additional data about the preceding 12 months from their user accounts. Predictor variables (144) were derived from users' transactions, apparent betting behaviours, listed demographics and use of responsible gambling tools on the platform.

Findings: Our best classification models (random forests) for the PGSI 5+ and 8+ outcome variables accounted for 84.33% (95% CI = 82.24-86.41) and 82.52% (95% CI = 79.96-85.08) of the total area under their receiver operating characteristic curves, respectively. The most important factors in these models included the frequency and variability of participants' betting behaviour and repeat engagement on the site.

Conclusions: Machine learning algorithms appear to be able to classify at-risk online gamblers using data generated from their use of online gambling platforms. They may enable personalized harm prevention initiatives, but are constrained by trade-offs between their sensitivity and precision.





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